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ECON 1500 Notes

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Chapter
Distributions
Creating Frequency
Data
histograms
analysis
excel
tables
pivot
manually
2k
classes
class interval
set
class
class
max
count
k
min
limits
intervals
there isn't
Classes
K
n
z
stay constant
necessarily
for
cumulative frequency
a
right
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wrong way
class
each
Rf for
or
that
for
class
classes
plus any
that
before it
Difference
Bar Chart
between
BC
represents categorical
H
represents
Frequency
quantitative
Polygon
Histogram
data
data
come
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lolygon
Fret
Skewness
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mean median mode
all
mean
about same
tells
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variance
of
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fuk
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t
AVERAGE
how
far
data falls
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of
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mean
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f
sample
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s
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around
more
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is
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mean
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the
know
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confusing
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it
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equation
just
work
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s
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or
1
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